Sound-Environment Monitoring Method Based on Computational Auditory Scene Analysis

M. Kawamoto
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引用次数: 1

Abstract

Monitoring techniques are a key technology for examining the conditions in various scenarios, e.g., structural conditions, weather conditions, and disasters. In order to understand such scenarios, the appropriate extraction of their features from observation data is important. This paper proposes a monitoring method that allows sound environments to be expressed as a sound pattern. To this end, the concept of synesthesia is exploited. That is, the keys, tones, and pitches of the monitored sound are expressed using the three elements of color, that is, the hue, saturation, and brightness, respectively. In this paper, it is assumed that the hue, saturation, and brightness can be detected from the chromagram, sonogram, and sound spectrogram, respectively, based on a previous synesthesia experiment. Then, the sound pattern can be drawn using color, yielding a “painted sound map.” The usefulness of the proposed monitoring technique is verified using environmental sound data observed at a galleria.
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基于计算听觉场景分析的声环境监测方法
监测技术是检查各种情况下的条件的关键技术,例如结构条件、天气条件和灾害。为了理解这些场景,从观测数据中适当提取其特征是很重要的。本文提出了一种可以将声音环境表示为声音模式的监测方法。为此目的,联觉的概念被利用。也就是说,被监测声音的键、音调和音高分别用颜色的三个元素表示,即色相、饱和度和亮度。本文基于前人的联觉实验,假设可以分别从色谱图、声谱图和声谱图中检测到色调、饱和度和亮度。然后,声音模式可以使用颜色绘制,从而产生“彩色声音图”。所建议的监测技术的有用性是通过在一个走廊上观察到的环境声音数据来验证的。
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